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Main Authors: Zhao, Chu, Yang, Eneng, Dang, Yizhou, Zhao, Jianzhe, Guo, Guibing, Wang, Xingwei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.07243
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author Zhao, Chu
Yang, Eneng
Dang, Yizhou
Zhao, Jianzhe
Guo, Guibing
Wang, Xingwei
author_facet Zhao, Chu
Yang, Eneng
Dang, Yizhou
Zhao, Jianzhe
Guo, Guibing
Wang, Xingwei
contents Heuristic negative sampling enhances recommendation performance by selecting negative samples of varying hardness levels from predefined candidate pools to guide the model toward learning more accurate decision boundaries. However, our empirical and theoretical analyses reveal that unobserved environmental confounders (e.g., exposure or popularity biases) in candidate pools may cause heuristic sampling methods to introduce false hard negatives (FHNS). These misleading samples can encourage the model to learn spurious correlations induced by such confounders, ultimately compromising its generalization ability under distribution shifts. To address this issue, we propose a novel method named Causal Negative Sampling via Diffusion (CNSDiff). By synthesizing negative samples in the latent space via a conditional diffusion process, CNSDiff avoids the bias introduced by predefined candidate pools and thus reduces the likelihood of generating FHNS. Moreover, it incorporates a causal regularization term to explicitly mitigate the influence of environmental confounders during the negative sampling process, leading to robust negatives that promote out-of-distribution (OOD) generalization. Comprehensive experiments under four representative distribution shift scenarios demonstrate that CNSDiff achieves an average improvement of 13.96% across all evaluation metrics compared to state-of-the-art baselines, verifying its effectiveness and robustness in OOD recommendation tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2508_07243
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Causal Negative Sampling via Diffusion Model for Out-of-Distribution Recommendation
Zhao, Chu
Yang, Eneng
Dang, Yizhou
Zhao, Jianzhe
Guo, Guibing
Wang, Xingwei
Machine Learning
Artificial Intelligence
Heuristic negative sampling enhances recommendation performance by selecting negative samples of varying hardness levels from predefined candidate pools to guide the model toward learning more accurate decision boundaries. However, our empirical and theoretical analyses reveal that unobserved environmental confounders (e.g., exposure or popularity biases) in candidate pools may cause heuristic sampling methods to introduce false hard negatives (FHNS). These misleading samples can encourage the model to learn spurious correlations induced by such confounders, ultimately compromising its generalization ability under distribution shifts. To address this issue, we propose a novel method named Causal Negative Sampling via Diffusion (CNSDiff). By synthesizing negative samples in the latent space via a conditional diffusion process, CNSDiff avoids the bias introduced by predefined candidate pools and thus reduces the likelihood of generating FHNS. Moreover, it incorporates a causal regularization term to explicitly mitigate the influence of environmental confounders during the negative sampling process, leading to robust negatives that promote out-of-distribution (OOD) generalization. Comprehensive experiments under four representative distribution shift scenarios demonstrate that CNSDiff achieves an average improvement of 13.96% across all evaluation metrics compared to state-of-the-art baselines, verifying its effectiveness and robustness in OOD recommendation tasks.
title Causal Negative Sampling via Diffusion Model for Out-of-Distribution Recommendation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2508.07243